Automatic planning for head and neck seed implant brachytherapy based on deep convolutional neural network dose engine

Author:

Xiao Zhuo1,Xiong Tianyu2,Geng Lishen2,Zhou Fugen13,Liu Bo13,Sun Haitao4,Ji Zhe4,Jiang Yuliang4,Wang Junjie4,Wu Qiuwen5

Affiliation:

1. Image Processing Center Beihang University Beijing People's Republic of China

2. School of Physics Beihang University Beijing People's Republic of China

3. Beijing Advanced Innovation Center for Biomedical Engineering Beihang University Beijing People's Republic of China

4. Department of Radiation Oncology Peking University Third Hospital Beijing People's Republic of China

5. Department of Radiation Oncology Duke University Medical Center Durham North Carolina USA

Abstract

AbstractBackgroundSeed implant brachytherapy (SIBT) is an effective treatment modality for head and neck (H&N) cancers; however, current clinical planning requires manual setting of needle paths and utilizes inaccurate dose calculation algorithms.PurposeThis study aims to develop an accurate and efficient deep convolutional neural network dose engine (DCNN‐DE) and an automatic SIBT planning method for H&N SIBT.MethodsA cohort of 25 H&N patients who received SIBT was utilized to develop and validate the methods. The DCNN‐DE was developed based on 3D‐unet model. It takes single seed dose distribution from a modified TG‐43 method, the CT image and a novel inter‐seed shadow map (ISSM) as inputs, and predicts the dose map of accuracy close to the one from Monte Carlo simulations (MCS). The ISSM was proposed to better handle inter‐seed attenuation. The accuracy and efficacy of the DCNN‐DE were validated by comparing with other methods taking MCS dose as reference. For SIBT planning, a novel strategy inspired by clinical practice was proposed to automatically generate parallel or non‐parallel potential needle paths that avoid puncturing bone and critical organs. A heuristic‐based optimization method was developed to optimize the seed positions to meet clinical prescription requirements. The proposed planning method was validated by re‐planning the 25 cases and comparing with clinical plans.ResultsThe absolute percentage error in the TG‐43 calculation for CTV V100 and D90 was reduced from 5.4% and 13.2% to 0.4% and 1.1% with DCNN‐DE, an accuracy improvement of 93% and 92%, respectively. The proposed planning method could automatically obtain a plan in 2.5 ± 1.5 min. The generated plans were judged clinically acceptable with dose distribution comparable with those of the clinical plans.ConclusionsThe proposed method can generate clinically acceptable plans quickly with high accuracy in dose evaluation, and thus has a high potential for clinical use in SIBT.

Funder

National Key Research and Development Program of China

Natural Science Foundation of Beijing Municipality

National Natural Science Foundation of China

Fundamental Research Funds for the Central Universities

Publisher

Wiley

Subject

General Medicine

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